Exact update formulae for distributed Kalman filtering and retrodiction at arbitrary communication rates

Track-to-track fusion aims at combining locally preprocessed information of individual sensors optimally, i.e. in a way that is equivalent to fusing all measurements of all sensors directly. It is well known that this can be achieved for deterministically moving targets or if the local sensor tracks produced at all individual scan times are available in the fusion center. Full-rate communication in this sense, however, is impractical in many applications. We thus propose a distributed Kalman-type processing scheme for maneuvering targets, which provides optimal track-totrack fusion results at arbitrarily chosen instants of time by communicating and combining the local sensor ‘tracks’ referring to this time. Applications can be found in situations with a highly fluctuating connectivity.